Shivani Sharma,
Avni Sharma,
- Student, Department of Computer Science & Engineering, Himachal Pradesh Technical University, Sasan, Himachal Pradesh, India
- Faculty, Department of Computer Science & Engineering, Himachal Pradesh Technical University, Sasan, Himachal Pradesh, India
Abstract
Pneumonia remains a primary cause of morbidness and mortality worldwide, necessitating the continuous advancement of diagnostic techniques for timely and accurate detection. Pneumonia is common, it is potentially a life-threatening infection for respiration, poses significant challenges to healthcare systems worldwide. Recently, the arrival of deep learning techniques has stirred up the field of medical imaging, offering promising avenues for enhanced pneumonia detection. In this paper, the advancements in pneumonia detection facilitated by deep learning techniques and their applications are discussed, and exploration is done that how deep learning techniques are changing the game. Beginning with an insightful introduction we dive into different deep learning methods, showing how they work and where they shine. This paper encompasses a thorough examination of diverse deep learning methods employed in pneumonia detection. This paper analyzes the performance of different techniques across different datasets, providing a comparative assessment of available research. By unpacking the latest advancements in a clear and friendly way, this review is valuable for anyone interested in using deep learning technology to detect and identify pneumonia effectively.
Keywords: X-Ray image, deep learning methods, pneumonia detection, CNN, radiologists
[This article belongs to Special Issue under section in OmniScience: A Multi-disciplinary Journal (osmj)]
Shivani Sharma, Avni Sharma. Advancements in Pneumonia X-Ray Image Detection: A Review. OmniScience: A Multi-disciplinary Journal. 2025; 15(01):1-11.
Shivani Sharma, Avni Sharma. Advancements in Pneumonia X-Ray Image Detection: A Review. OmniScience: A Multi-disciplinary Journal. 2025; 15(01):1-11. Available from: https://journals.stmjournals.com/osmj/article=2025/view=195173
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OmniScience: A Multi-disciplinary Journal
| Volume | 15 |
| Special Issue | 01 |
| Received | 14/10/2024 |
| Accepted | 20/11/2024 |
| Published | 23/01/2025 |
| Publication Time | 101 Days |
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